A Bayesian framework for automated dataset retrieval in geographic information systems

Existing geographic information systems (GIS) are intended for expert users and consequently, do not provide any machine intelligence to assist users. This paper presents a Bayesian framework that will incorporate expert knowledge in order to retrieve all relevant datasets given an initial user query. The framework uses a spatial model that combines relational, non-spatial and spatial data. This spatial model allows efficient access of relational linkages for a Bayesian network, and thus improves support for complex and vague queries. The Bayesian network assigns causal probabilities to these relational linkages in order to define expert knowledge of related datasets in the GIS. In addition, the framework will learn which datasets are best suited for particular query input through feedback supplied by the user. This contribution will increase the performance and efficiency of knowledge extraction from GIS by allowing users to focus on interpreting data, instead of focusing on finding which data is relevant to their analysis. The initial user query can be vague and the framework will still be capable of retrieving relevant datasets via the linkages discovered in the Bayesian network.

[1]  Peter Haddawy,et al.  BANTER: a Bayesian network tutoring shell , 1997, Artif. Intell. Medicine.

[2]  Peter Haddawy,et al.  Answering Queries from Context-Sensitive Probabilistic Knowledge Bases (cid:3) , 1996 .

[3]  David Heckerman,et al.  A Tutorial on Learning with Bayesian Networks , 1998, Learning in Graphical Models.

[4]  Eric Horvitz,et al.  Inferring Informational Goals from Free-Text Queries: A Bayesian Approach , 1998, UAI.

[5]  Alberto Del Bimbo,et al.  Weighting spatial arrangement of colors in content based image retrieval , 1999, Proceedings IEEE International Conference on Multimedia Computing and Systems.

[6]  Wai Lam,et al.  A Bayesian approach for understanding information-seeking queries , 1999, IEEE SMC'99 Conference Proceedings. 1999 IEEE International Conference on Systems, Man, and Cybernetics (Cat. No.99CH37028).

[7]  John S. J. Hsu,et al.  Bayesian Methods: An Analysis for Statisticians and Interdisciplinary Researchers , 1999 .

[8]  Shu-Ching Chen,et al.  A Bayesian network-based expert query system for a distributed database system , 2000, Smc 2000 conference proceedings. 2000 ieee international conference on systems, man and cybernetics. 'cybernetics evolving to systems, humans, organizations, and their complex interactions' (cat. no.0.

[9]  Driss Kettani,et al.  A qualitative spatial model for information fusion and situation analysis , 2000, Proceedings of the Third International Conference on Information Fusion.

[10]  Andrew Alojz Skabar Inductive learning techniques for mineral potential mapping , 2001 .

[11]  Anthony Jameson,et al.  When actions have consequences: empirically based decision making for intelligent user interfaces , 2001, Knowl. Based Syst..

[12]  Jong-Hun Lee,et al.  Efficient method for manipulating complex features in 3D-GIS , 2001, IGARSS 2001. Scanning the Present and Resolving the Future. Proceedings. IEEE 2001 International Geoscience and Remote Sensing Symposium (Cat. No.01CH37217).

[13]  Agnès Voisard,et al.  A Database Perspective on Geospatial Data Modeling , 2002, IEEE Trans. Knowl. Data Eng..